3.8 Proceedings Paper

IHGNN: Interactive Hypergraph Neural Network for Personalized Product Search

Journal

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3485447.3511954

Keywords

Hypergraph; Personalized Product Search; Interaction

Funding

  1. National Natural Science Foundation of China [62102382, U19A2079]
  2. USTC Research Funds of the Double First-Class Initiative [WK2100000019]
  3. Alibaba Innovative Research project [ATT50DHZ420003]

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A good personalized product search system should consider both retrieving relevant products and user personalized preference. Existing methods mainly focus on representation learning, but they fail to fully exploit the collaborative signal in historical interactions. This work proposes a new model IHGNN that utilizes hypergraphs and an interactive hypergraph neural network to enhance personalized product search.
A good personalized product search (PPS) system should not only focus on retrieving relevant products, but also consider user personalized preference. Recent work on PPS mainly adopts the representation learning paradigm, e.g., learning representations for each entity (including user, product and query) from historical user behaviors (aka. user-product-query interactions). However, we argue that existing methods do not sufficiently exploit the crucial collaborative signal, which is latent in historical interactions to reveal the affinity between the entities. Collaborative signal is quite helpful for generating high-quality representation, exploiting which would benefit the representation learning of one node from its connected nodes. To tackle this limitation, in this work, we propose a new model IHGNN for personalized product search. IHGNN resorts to a hypergraph constructed from the historical user-product-query interactions, which could completely preserve ternary relations and express collaborative signal based on the topological structure. On this basis, we develop a specific interactive hypergraph neural network to explicitly encode the structure information (i.e., collaborative signal) into the embedding process. It collects the information from the hypergraph neighbors and explicitly models neighbor feature interaction to enhance the representation of the target entity. Extensive experiments on three real-world datasets validate the superiority of our proposal over the state-of-the-arts.

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